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Geometric Laplace Neural Operator

About

Neural operators have emerged as powerful tools for learning mappings between function spaces, enabling efficient solutions to partial differential equations across varying inputs and domains. Despite the success, existing methods often struggle with non-periodic excitations, transient responses, and signals defined on irregular or non-Euclidean geometries. To address this, we propose a generalized operator learning framework based on a pole-residue decomposition enriched with exponential basis functions, enabling expressive modeling of aperiodic and decaying dynamics. Building on this formulation, we introduce the Geometric Laplace Neural Operator (GLNO), which embeds the Laplace spectral representation into the eigen-basis of the Laplace-Beltrami operator, extending operator learning to arbitrary Riemannian manifolds without requiring periodicity or uniform grids. We further design a grid-invariant network architecture (GLNONet) that realizes GLNO in practice. Extensive experiments on PDEs/ODEs and real-world datasets demonstrate our robust performance over other state-of-the-art models.

Hao Tang, Jiongyu Zhu, Zimeng Feng, Hao Li, Chao Li• 2025

Related benchmarks

TaskDatasetResultRank
SegmentationRNA Surface 640 meshes
Accuracy90.1
14
SegmentationHuman Body 12k-vertex meshes
Accuracy91
14
Shape classificationSHREC-11 30-class
Accuracy99.7
14
Fluid Dynamics PredictionShape-Net Car
Pressure L2 Error0.096
13
PDE solvingPoisson
L2 Error0.0044
13
Learning Nonlinear and Non-Periodic Responses on ODEs/PDEsDriven Pendulum c=0 (test)
Relative Error0.2916
7
Learning Nonlinear and Non-Periodic Responses on ODEs/PDEsDriven Pendulum (c=0.5) (test)
Relative Error0.0875
7
Learning Nonlinear and Non-Periodic Responses on ODEs/PDEsDuffing Oscillator (c=0) (test)
Relative Error0.4416
7
Learning Nonlinear and Non-Periodic Responses on ODEs/PDEsDuffing Oscillator c=0.5 (test)
Relative Error0.0725
7
Learning Nonlinear and Non-Periodic Responses on ODEs/PDEsLorenz System rho=10 (test)
Relative Error0.2187
7
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